import os
import shutil
import subprocess
import time
from typing import List

from swift.utils import get_device_count

# NOTE: this script supports at most 8 GPUS in a node, if using multi node, please use custom logic.

# Paste conda env
# conda_prefix = 'source /root/miniconda3/etc/profile.d/conda.sh && conda activate py311 && '
conda_prefix = ''


def do_sample(model: str, model_type: str, dataset: List[str], iter: int):
    device_count = get_device_count()
    handlers = []
    datasets = []
    # Sampling cache, to avoid lmdeploy & PRM run at the same time
    # Why lmdeploy not vllm? we found that the responses generated by lmdeploy are more similar than ones of vllm.
    for device in range(device_count):
        sample_cmd = (f'{conda_prefix} USE_OPENCOMPASS_EVALUATOR=True CUDA_VISIBLE_DEVICES={device} swift sample '
                      f'--model {model} --model_type {model_type} '
                      f'--dataset {" ".join(dataset)} '
                      f'--data_range {device} {device_count} '
                      f'--max_length 2048 '
                      f'--system "You are a math model, you should **think step by step** carefully, '
                      f'and always consider the basic math principles to avoid making calculating mistakes.'
                      f'Give the final answer wrapped with \\boxed{{}}" '
                      f'--load_args false '
                      f'--sampler_engine vllm '
                      f'--max_new_tokens 768 '
                      f'--override_exist_file true '
                      f'--num_sampling_batch_size 1 '
                      f'--num_return_sequences 64 '
                      f'--cache_files sample_output/iter_{iter}_proc_{device}_cache.jsonl '
                      f'--output_file iter_{iter}_proc_{device}_cache.jsonl '
                      f'--top_p 1.0 '
                      f'--temperature 1.0 ')
        print(f'Sampling caches of iter {iter}, part {device}.', flush=True)
        env = os.environ.copy()
        env['CUDA_VISIBLE_DEVICES'] = str(device)
        handler = subprocess.Popen(
            f'{sample_cmd}' + f' > logs/sample_iter_{iter}_proc_{device}_cache.log 2>&1',
            env=os.environ.copy(),
            shell=True,
            executable='/bin/bash')
        handlers.append(handler)

    for proc, handler in enumerate(handlers):
        handler.wait()
        assert os.path.exists(os.path.join('sample_output', f'iter_{iter}_proc_{proc}_cache.jsonl'))

    handlers = []
    # Sample again, this time to filter with ORM & PRM
    # Provide your PRM model or PRM name(add PRM in plugin/prm.py first)
    # You can define your custom PRM logic in the plugin
    # (like, split your steps, use the worst score/last score/avg score)
    for device in range(device_count):
        sample_cmd = (
            f'{conda_prefix} USE_OPENCOMPASS_EVALUATOR=True CUDA_VISIBLE_DEVICES={device} swift sample '
            f'--model {model} --model_type {model_type} '  # change to --resume_from_checkpoint to use the latest optimizer state # noqa
            f'--dataset {" ".join(dataset)} '
            f'--data_range {device} {device_count} '
            f'--max_length 2048 '
            f'--system "You are a math model, you should **think step by step** carefully, '
            f'and always consider the basic math principles to avoid making calculating mistakes.'
            f'Give the final answer wrapped with \\boxed{{}}" '
            f'--load_args false '
            f'--sampler_engine no '
            f'--orm_model math '  # math defines in plugin/orm.py
            f'--prm_model Qwen/Qwen2.5-Math-PRM-7B '
            f'--prm_threshold {min(0.7 + 0.1*iter, 0.9)} '
            f'--max_new_tokens 768 '
            f'--override_exist_file true '  # no not override the existing sample files
            f'--num_sampling_batch_size 1 '
            f'--num_return_sequences 64 '
            f'--output_file iter_{iter}_proc_{device}_sampling.jsonl '
            f'--cache_files sample_output/iter_{iter}_proc_{device}_cache.jsonl ')
        print(f'Sampling iter {iter}, part {device}.', flush=True)
        env = os.environ.copy()
        env['CUDA_VISIBLE_DEVICES'] = str(device)
        handler = subprocess.Popen(
            f'{sample_cmd}' + f' > logs/sample_iter_{iter}_proc_{device}.log 2>&1',
            env=os.environ.copy(),
            shell=True,
            executable='/bin/bash')
        handlers.append(handler)

    for proc, handler in enumerate(handlers):
        handler.wait()
        assert os.path.exists(os.path.join('sample_output', f'iter_{iter}_proc_{proc}_sampling.jsonl')), (
            f'{os.path.join("sample_output", f"iter_{iter}_proc_{proc}_sampling.jsonl")} not exists, '
            'please check the sample logs to get the detail error.')
        datasets.append(os.path.join('sample_output', f'iter_{iter}_proc_{proc}_sampling.jsonl'))
    print(f'Sampling done, files:{datasets}', flush=True)
    return datasets


def do_train(model: str, model_type: str, datasets: List[str], iter, cmd='sft'):
    gpu_prefix = ''
    ds_config = ''
    if get_device_count() > 1:
        gpu_prefix = f'NPROC_PER_NODE={get_device_count()} '
        ds_config = '--deepspeed zero3 '
    extra_args = ''
    if cmd == 'rlhf':
        extra_args = '--rlhf_type dpo --beta 0.3 '  # use another reinforce learning method supported by swift
    ga = 128 // get_device_count() // 2
    train_cmd = (f'{conda_prefix} {gpu_prefix} swift {cmd} '
                 f'--model {model} --model_type {model_type} '
                 f'--dataset {" ".join(datasets)} '
                 f'--max_length 2048 '
                 f'--num_train_epochs 1 '
                 f'--load_args false '
                 f'--train_type full '
                 f'{extra_args} '
                 f'--eval_strategy no '
                 f'--split_dataset_ratio 0 '
                 f'--per_device_train_batch_size 2 '
                 f'--gradient_accumulation_steps {ga} '
                 f'--save_steps 1 '
                 f'--save_strategy epoch '
                 f'{ds_config} '
                 f'--learning_rate 4e-6 ')

    print(f'Training iter {iter}.', flush=True)
    handler = subprocess.Popen(
        f'{train_cmd}' + f' > logs/train_iter_{iter}.log 2>&1',
        shell=True,
        env=os.environ.copy(),
        executable='/bin/bash')
    handler.wait()
    ckpt = None
    with open(f'logs/train_iter_{iter}.log', 'r') as f:
        for line in f.readlines():
            if 'last_model_checkpoint: ' in line:
                ckpt = line.split('last_model_checkpoint: ')[1]
                break
    assert ckpt is not None
    print(f'Training done, ckpt: {ckpt.strip()}.', flush=True)
    return ckpt.strip()


def do_eval(model, model_type: str, iter):
    eval_cmd = (
        f'{conda_prefix} swift eval '
        '--eval_dataset competition_math '  # eval another dataset
        '--infer_backend vllm --eval_limit 500 '
        f'--model {model} --model_type {model_type} '
        '--system "You are a math model, you should **think step by step** carefully, '
        'and always consider the basic math principles to avoid making calculating mistakes. '
        'Give the final answer wrapped with \\boxed{}"')
    print('Evaluating.', flush=True)
    # Replace the original dataset to the math.json, this is for test, comment this if not need
    replace_math_dataset()

    if iter is None:
        iter = 'origin'
    env = os.environ.copy()
    env['CUDA_VISIBLE_DEVICES'] = '0'
    handler = subprocess.Popen(
        f'{eval_cmd}' + f' > logs/eval_iter_{iter}.log 2>&1', shell=True, env=env, executable='/bin/bash')
    handler.wait()

    acc = None
    # | math | 393424 | accuracy | gen | 39.00 |
    with open(f'logs/eval_iter_{iter}.log', 'r') as f:
        for line in f.readlines():
            if 'Level 5' in line and 'AveragePass@1' in line:
                parts = [p for p in line.split('|') if p.strip()]
                acc = float(parts[-2])
                break

    print(f'Iter {iter} eval done with acc: {acc}.', flush=True)
    return acc


def replace_math_dataset():
    # Note: This may run failed because this is special for math test,
    # and one must run swift eval --eval_dataset math first to make sure opencompass has created
    # the folder.
    # You can use original math dataset either. just comment this call.
    user_dir = os.path.expanduser('~')
    if os.path.exists(os.path.join(user_dir, '.cache', 'opencompass', 'data', 'math', 'math.json')):
        os.remove(os.path.join(user_dir, '.cache', 'opencompass', 'data', 'math', 'math.json'))
    shutil.copy(
        os.path.join('examples', 'train', 'rft', 'math.json'),
        os.path.join(user_dir, '.cache', 'opencompass', 'data', 'math', 'math.json'))


def main():
    os.makedirs('logs', exist_ok=True)
    max_acc = 0.
    first_model = 'Qwen/Qwen2.5-Math-7B-Instruct'
    model_type = 'qwen2_5_math'

    if False:
        # eval the original model
        do_eval(first_model, None)

    model = first_model
    for i in range(5):
        ts = time.time()
        datasets = do_sample(model, model_type, ['tastelikefeet/competition_math'], i)
        # add custom data filter here, for example: length or diversity control
        print(f'do sample cost: {(time.time()-ts) / 60:.1f} minutes.', flush=True)
        ts = time.time()
        # if want to train the original dataset with datasets, add the original dataset here
        # if want to train the original model everytime, change to first_model
        ckpt = do_train(model, model_type, datasets, i)
        print(f'do train cost: {(time.time() - ts) / 60:.1f} minutes.', flush=True)
        ts = time.time()
        acc = do_eval(ckpt, model_type, i)
        print(f'do eval cost: {(time.time() - ts) / 60:.1f} minutes.', flush=True)
        if acc > max_acc:
            max_acc = acc
        model = ckpt
        print(f'acc: {acc}, upgrade model to : {model}', flush=True)


if __name__ == '__main__':
    main()
